We prove that the $f$-divergences between univariate Cauchy distributions are all symmetric, and can be expressed as strictly increasing scalar functions of the symmetric chi-squared divergence. We report the corresponding scalar functions for the total variation distance, the Kullback-Leibler divergence, the squared Hellinger divergence, and the Jensen-Shannon divergence among others. Next, we give conditions to expand the $f$-divergences as converging infinite series of higher-order power chi divergences, and illustrate the criterion for converging Taylor series expressing the $f$-divergences between Cauchy distributions. We then show that the symmetric property of $f$-divergences holds for multivariate location-scale families with prescribed matrix scales provided that the standard density is even which includes the cases of the multivariate normal and Cauchy families. However, the $f$-divergences between multivariate Cauchy densities with different scale matrices are shown asymmetric. Finally, we present several metrizations of $f$-divergences between univariate Cauchy distributions and further report geometric embedding properties of these metrics.
翻译:我们证明,在未变式的Cauche分配之间,美元差异是完全对称的,可以表述为严格增加对称的千差差数对称质量差异的缩放功能。我们报告总变差距离、Kullback-Leiber差异、平方的Hellinger差异和Jensen-Shannon差异等值的相应缩放功能。接下来,我们为扩大美元差异提供了条件,将美元差异扩大为无穷无穷无尽的一连串高阶分权奇差,并展示了表示Cauchy分发之间美元差异的调和调和功能的调和标准。我们随后表明,美元差异的平差值对称属性对于具有规定的矩阵尺度的多变式位置家庭来说,只要标准密度甚至包括多变式正常和宽度家庭的情况,则具有美元差异性能差异性能。然而,以不同规模矩阵的多变式Cawary 时的调调调调调调调调调调调调调调调调调调调调调调调调调调调调调调调。